Sensing the Future: A Design Framework for Context-aware Predictive Systems

Michel Avital, Samir Chatterjee, Szymon Furtak

Research output: Contribution to journalJournal articleResearchpeer-review

63 Downloads (Pure)

Abstract

Sensors embedded in smart objects, smart machines, and smart buildings produce ever-growing streams of contextual data that convey information of interest about their operating environment. Although an increasing number of industries embrace the utilization of sensors in routine operations, no clear framework is available to guide designers who aim to leverage contextual data collected from these sensors to develop predictive systems. In this paper, we applied the Design Science Research methodology to develop and evaluate a general framework that helps designers to build predictive systems utilizing sensor data. Specifically, we developed a framework for designing context-aware predictive systems (CAPS). We then evaluated the framework through its application in MAN Diesel & Turbo, which served as a case company. The framework can be generalized into a class of demand-forecasting problems that rely on sensor-generated contextual data. The CAPS framework is unique and can help practitioners make better-informed decisions when designing context-aware predictive systems.
Original languageEnglish
Article number5
JournalJournal of the Association for Information Systems
Volume24
Issue number4
Pages (from-to)1031-1051
Number of pages21
ISSN1558-3457
DOIs
Publication statusPublished - 2023

Bibliographical note

Published online: 26 April 2023.

Keywords

  • Design framework
  • System design
  • Sensor data
  • IoT data
  • Predictive analytics
  • Forecasting
  • Design science research

Cite this